Get Free Shipping on orders over $89
Model Engineering for Simulation - Zhang

Model Engineering for Simulation

By: Zhang, Zeigler, LaiLi

Paperback | 1 March 2019 | Edition Number 1

At a Glance

Paperback


RRP $224.95

$203.75

or 4 interest-free payments of $50.94 with

 or 

Ships in 5 to 7 business days

Model Engineering for Simulation provides a systematic introduction to the implementation of generic, normalized and quantifiable modeling and simulation using DEVS formalism. It describes key technologies relating to model lifecycle management, including model description languages, complexity analysis, model management, service-oriented model composition, quantitative measurement of model credibility, and model validation and verification. The book clearly demonstrates how to construct computationally efficient, object-oriented simulations of DEVS models on parallel and distributed environments.

  • Guides systems and control engineers in the practical creation and delivery of simulation models using DEVS formalism
  • Provides practical methods to improve credibility of models and manage the model lifecycle
  • Helps readers gain an overall understanding of model lifecycle management and analysis
  • Supported by an online ancillary package that includes an instructors and student solutions manual

More in Physics

The Breath of the Gods : The History and Future of the Wind - Simon Winchester
Astrophysics for People in a Hurry - Neil deGrasse Tyson

RRP $31.95

$26.75

16%
OFF
The Anthropic Cosmological Principle : Oxford Paperbacks - Frank J.  Tipler
The Holographic Universe - Michael Talbot
Quantum 2.0 : The Past, Present, and Future of Quantum Physics - Paul Davies
The Invisible Rainbow : A History of Electricity and Life - Arthur Firstenberg
Chalcogenide Nanophotonics - Tun Cao
Black Holes : The key to understanding the universe - Professor Brian Cox
The Theory of Cosmic Ray Modulation - N. Eugene  Engelbrecht

RRP $275.95

$247.75

10%
OFF
Technologies for Soil and Water Pollution Remediation - Peiyue  Li
Introduction and Applications of Machine Learning in Geotechnics